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A Method of Channel Capacity Optimization Based on Dynamically Adjusted Inertia Weight Acceleration Factor in Cognitive Sensing Network

机译:一种基于动态调整的惯性权重加速度在认知感测网络中的信道容量优化方法

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The optimization of channel capacity in cognitive sensor networks is a complicated optimization problem. The traditional gradient search method based on the analysis has more restrictions on the objective function, and high complexity, and can not determine the convergence. Aiming at the inherent problems of the traditional gradient search algorithm, the particle swarm optimization(PSO) with simple and easy to implement, distributed computing and fast convergence speed can be used to solve the problem of channel capacity optimization. It is difficult to balance the global search with the local search by adopting a standard particle swarm algorithm with fixed algorithm parameters, which can not solve the premature convergence problem that may occur. The specific meaning of each parameter of the algorithm is analyzed in this paper, and an improved particle swarm optimization algorithm based on dynamic adjustment of inertia weight acceleration factor(DWAPSO) is proposed, and the improved particle swarm optimization algorithm is applied to the optimization of channel capacity in cognitive sensor networks. The simulation results show that the improved channel capacity optimization algorithm(DWAPSO-CA) can speed up the convergence rate, increase the system capacity and get a lower bit error rate.
机译:认知传感器网络中信道容量的优化是一个复杂的优化问题。基于分析的传统梯度搜索方法对客观函数和高复杂性具有更多限制,并且无法确定收敛。针对传统梯度搜索算法的固有问题,通过简单且易于实现,分布式计算和快速收敛速度的粒子群优化(PSO)可用于解决信道容量优化的问题。通过采用具有固定算法参数的标准粒子群算法,难以使用本地搜索平衡全球搜索,该算法无法解决可能无法解决可能发生的过早收敛问题。本文分析了算法的每个参数的具体含义,提出了一种改进的基于惯性加速度(DWAPSO)动态调整的粒子群优化算法,并将改进的粒子群优化算法应用于优化认知传感器网络中的信道容量。仿真结果表明,改进的信道容量优化算法(DWAPSO-CA)可以加快收敛速度​​,提高系统容量并获得较低的误码率。

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